tensorflow_tutorials
tensorflow_tutorials copied to clipboard
From the basics to slightly more interesting applications of Tensorflow
TensorFlow Tutorials
You can find python source code under the python
directory, and associated notebooks under notebooks
.
Source code | Description | |
---|---|---|
1 | basics.py | Setup with tensorflow and graph computation. |
2 | linear_regression.py | Performing regression with a single factor and bias. |
3 | polynomial_regression.py | Performing regression using polynomial factors. |
4 | logistic_regression.py | Performing logistic regression using a single layer neural network. |
5 | basic_convnet.py | Building a deep convolutional neural network. |
6 | modern_convnet.py | Building a deep convolutional neural network with batch normalization and leaky rectifiers. |
7 | autoencoder.py | Building a deep autoencoder with tied weights. |
8 | denoising_autoencoder.py | Building a deep denoising autoencoder which corrupts the input. |
9 | convolutional_autoencoder.py | Building a deep convolutional autoencoder. |
10 | residual_network.py | Building a deep residual network. |
11 | variational_autoencoder.py | Building an autoencoder with a variational encoding. |
Installation Guides
For Ubuntu users using python3.4+ w/ CUDA 7.5 and cuDNN 7.0, you can find compiled wheels under the wheels
directory. Use pip3 install tensorflow-0.8.0rc0-py3-none-any.whl
to install, e.g. and be sure to add: export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:/usr/local/cuda/lib64"
to your .bashrc
. Note, this still requires you to install CUDA 7.5 and cuDNN 7.0 under /usr/local/cuda
.
Resources
Author
Parag K. Mital, Jan. 2016.
http://pkmital.com
License
See LICENSE.md